Springer
Table of ContentsAuthor IndexSearch

Immune Inspired Somatic Contiguous Hypermutation for Function Optimisation

Johnny Kelsey and Jon Timmis

Computing Laboratory,
University of Kent
Canterbury. Kent. CT2 7NF. UK
{jk34,jt6}@kent.ac.uk

Abstract. When considering function optimisation, there is a trade off between quality of solutions and the number of evaluations it takes to find that solution. Hybrid genetic algorithms have been widely used for function optimisation and have been shown to perform extremely well on these tasks. This paper presents a novel algorithm inspired by the mammalian immune system, combined with a unique mutation mechanism. Results are presented for the optimisation of twelve functions, ranging in dimensionality from one to twenty. Results show that the immune inspired algorithm performs significantly fewer evaluations when compared to a hybrid genetic algorithm, whilst not sacrificing quality of the solution obtained.

LNCS 2723, p. 207 ff.

Full article in PDF

lncs@springer.de
© Springer-Verlag Berlin Heidelberg 2003